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High-Dimensional Similarity Query Processing for Data Science

Jianbin Qin, Wei Wang, Chuan Xiao, Ying Zhang, Yaoshu Wang

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Abstract

Similarity query (a.k.a. nearest neighbor query) processing has been an active research topic for several decades. It is an essential procedure in a wide range of applications (e.g., classification & regression, deduplication, image retrieval, and recommender systems). Recently, representation learning and auto-encoding methods as well as pre-trained models have gained popularity. They basically deal with dense high-dimensional data, and this trend brings new opportunities and challenges to similarity query processing. Meanwhile, new techniques have emerged to tackle this long-standing problem theoretically and empirically.

Topics & Concepts

Computer scienceQuery expansionSimilarity (geometry)Data deduplicationInformation retrievalRange query (database)PopularityQuery optimizationNearest neighbor searchRange (aeronautics)Web query classificationSargableData miningk-nearest neighbors algorithmWeb search queryArtificial intelligenceImage (mathematics)DatabaseSearch engineMaterials sciencePsychologyComposite materialSocial psychologyAdvanced Image and Video Retrieval TechniquesImage Retrieval and Classification TechniquesData Management and Algorithms
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